CN104237777A - Support vector machine high-voltage circuit breaker fault diagnosis method based on core principal component analysis - Google Patents
Support vector machine high-voltage circuit breaker fault diagnosis method based on core principal component analysis Download PDFInfo
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Abstract
The invention discloses a support vector machine high-voltage circuit breaker fault diagnosis method based on core principal component analysis. The method comprises the following steps that (1) the opening-closing coil current curve of a high-voltage circuit breaker is collected to be used as a database for fault diagnosis, and the database comprises data during normal operation of the high-voltage circuit breaker and data during abnormal operation of the high-voltage circuit breaker; (2) based on the data during normal operation of the high-voltage circuit breaker, a core principal component analysis model is established; (3) based on the core principal component analysis model, an abnormal data sample is detected; and (4) a support vector machine is used for carrying out fault diagnosis. The anti-jamming capability of a fault diagnosis algorithm is improved, and under the situation that jamming intensity reaches 30%, the diagnosis accuracy can still be maintained to be at least 90%. Accordingly, the efficiency and the accuracy of high-voltage circuit breaker fault diagnosis are effectively improved, and great practical significance in safe, reliable and stable operation of a power grid is achieved.
Description
Technical field
The present invention relates to a kind of support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis, is a kind of non-linear fault diagnosis method.
Background technology
Along with the raising of voltage class of electric power system and the increase of installed capacity, user proposes more and more higher requirement to power supply quality and power supply reliability, and this proposes more and more higher requirement to the on-line monitoring of power equipment and fault diagnosis.Primary cut-out is as protection and control equipment important in electric system, and ensureing that it normally works is the basis of guaranteeing power network safety operation.
At first, people are overhaul after fault occurs to the mode that isolating switch overhauls again, and also cry break down maintenance, the stable operation of this maintenance mode on electrical network has larger impact.Develop into the set time afterwards gradually and carry out preventative prophylactic repair.Although regular inspection and maintenance can reduce and prevent the generation of some accidents, still certain impact is existed on electrical network.Such as, when carrying out maintenance overhaul, needing to cut off the electricity supply, removing dress to isolating switch, monitor under the state had a power failure to it, distinguish to some extent during this hanging net operation normal with isolating switch, the data detected can have a certain impact, and can not accurately describe the problem.The concept of " State Maintenance " comes into vogue gradually at present.State Maintenance technology is state inspection according to advanced person and fault diagnosis technology, provides the status information of equipment, and judges the operation conditions of equipment, make us can carry out preventative maintenance to equipment before the failure occurs.
Over more than 30 year, the fault diagnosis technology of primary cut-out experienced by one measures artificial intelligence, man-machine collaboration evolution from simple signal.Initial diagnostic method is the I/O signal of direct measuring system, whether there occurs fault by the signal intensity certainty annuity that whether transfinites.When a certain characterization signal and normal condition have difference, just likely there occurs fault, but also experience analyzed is needed to fault type and position.Then, develop into and signal is carried out some simply process, obtain the correlated characteristic amount of signal, such as rate of change, system effectiveness etc., thus the diagnostic function of system can be made to obtain improvement to a certain extent.
In a word, at present the research in this field is scarcely out of swaddling-clothes.In actual applications, be subject to many-sided impact, comprise: one, be difficult to set up accurate mathematical model; Two, sufficient awareness and understanding are lacked to the uncertainty, time variation etc. of system architecture and parameter; Three, interference and the impact that causes of noise, the accuracy of fault diagnosis algorithm is not high, cannot meet the requirement of real-time that intelligent grid proposes Fault Diagnosis for HV Circuit Breakers and reliability.Therefore, how to invent a kind of Fault Diagnosis for HV Circuit Breakers algorithm with degree of precision and fiduciary level and become the problem needing solution badly.
Summary of the invention
The present invention mainly solves the technical matters existing for prior art, thus provide a kind of and can carry out pattern classification to the fault of primary cut-out exactly, avoid unnecessary maintenance, effectively improve the support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis of the economy of electric system, reliability, security, economy.
Above-mentioned technical matters of the present invention is mainly solved by following technical proposals:
Based on a support vector machine Fault Diagnosis for HV Circuit Breakers method for core pivot element analysis, it is characterized in that: comprise the steps:
(1) the divide-shut brake coil current curve of primary cut-out is gathered as the database of fault diagnosis, data when comprising the data of primary cut-out when normal operation and primary cut-out in misoperation;
(2) based on the data of primary cut-out when normally running, the model of core pivot element analysis is set up;
(3) based on the model of core pivot element analysis, abnormal data sample is detected;
(4) support vector machine is used to carry out fault diagnosis.
More optimizedly, in described step (1), the divide-shut brake coil current of primary cut-out is gathered by Hall current sensor.
More optimizedly, in described step (2), the foundation of core pivot element analysis model comprises the steps:
(21) gather the data of primary cut-out when normal operation, set up training sample data matrix X according to the data collected
m × n, i-th training sample data is x
i;
(22) choose kernel function and nuclear parameter, the nuclear matrix K of calculation training sample data matrix, centralization process is carried out to nuclear matrix K and obtains K ';
(23) calculating K ' covariance matrix, the eigenvalue λ of the covariance matrix described in calculating
iand proper vector p
i;
(24) to eigenvalue λ
iby descending sort, obtain λ '
1> λ '
2> L > λ '
n, assignment λ
i=λ '
i; To proper vector p
icarry out orthogonalization process, obtain p '
1, p '
2, L, p '
n, assignment p
i=p '
i; By standardized data matrix Z
m × nbe decomposed into the outer sum of n proper vector
wherein t
ifor principal component vector, reflect the interrelated relation between sample;
(25) eigenvalue λ after sequence is calculated
iaccumulation contribution rate L
1, L
2, L, L
n, according to setting threshold epsilon, if L
k>=ε, then extract the number k of principal component vector;
(26) compute statistics SPE value and determine confidence limit.
More optimizedly, in described step (3), the testing process of abnormal data sample is: the data first in Resurvey primary cut-out operational process, sets up test sample book data matrix according to the data collected; Then adopt the method identical with step (2), nuclear matrix is calculated, until calculate the value of statistic to test sample book data matrix; Finally the confidence limit that the value of the statistic SPE calculated and step (26) obtain is compared, if exceed, be judged as breaking down, otherwise normally.
More optimizedly, in described step (26):
The value of compute statistics SPE is
Wherein, e
ifor error matrix vector, Z
ifor standardized data matrix-vector, P
k=[p
1, p
2, L, p
k] be k proper vector before after orthogonalization process,
Determine that confidence is limited to
Wherein
C
αfor the critical value of normal distribution under insolation level α.
In sum, the advantage of the support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis of the present invention is: the support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis provided by the invention, can identify the fault of primary cut-out rapidly, exactly, compared with the existing methods, it substantially increases the antijamming capability of fault diagnosis algorithm; When interference strength reaches 30%, diagnosis accuracy still can remain on more than 90%; Algorithm of the present invention has stronger robustness.
Accompanying drawing explanation
In order to be illustrated more clearly in the embodiment of the present invention or technical scheme of the prior art, be briefly described to the accompanying drawing used required in embodiment or description of the prior art below, apparently, accompanying drawing in the following describes is only some embodiments of the present invention, for those of ordinary skill in the art, under the prerequisite not paying creative work, other accompanying drawing can also be obtained according to these accompanying drawings.
Fig. 1 is the realization flow figure of the inventive method;
Fig. 2 is primary cut-out closing coil electric current typical curve;
Fig. 3 is Closing fault parametric t
1anomaly data detection SPE schemes;
Fig. 4 is Closing fault parametric t
2anomaly data detection SPE schemes;
Fig. 5 is separating brake fault parameter i
1anomaly data detection SPE schemes;
Fig. 6 is separating brake fault parameter i
2anomaly data detection SPE schemes.
Embodiment
Below in conjunction with accompanying drawing, the preferred embodiments of the present invention are described in detail, can be easier to make advantages and features of the invention be readily appreciated by one skilled in the art, thus more explicit defining is made to protection scope of the present invention.
The advantage of the support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis of the present invention is: can carry out pattern classification to the fault of primary cut-out exactly, avoid unnecessary maintenance, effectively improve the economy of electric system, reliability, security, economy.
Be illustrated in figure 1 a kind of support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis, illustrated with regard to each step below.
Step one, Hall current sensor is utilized to gather the divide-shut brake coil current curve of primary cut-out as the database of fault diagnosis, data when comprising the data of primary cut-out when normal operation and primary cut-out in misoperation.
Because circuit-breaker switching on-off coil current signal is easy to gather, and feature is obvious, utilize the bulk information that it can judge in circuit-breaker switching on-off process, many fault types of breaker control circuit can be reflected, the present invention selects divide-shut brake coil current as the object of feature extraction, and typical current waveform as shown in Figure 2.
Typical zygonema loop current curve can be divided into 5 stages substantially:
First stage: t
0~ t
1, t
0moment switching signal arrives, and electric current rises, to t
1moment setting in motion unshakable in one's determination;
Subordinate phase: t
1~ t
2, motion unshakable in one's determination, electric current drops to t
2moment, contact operating mechanism hasp unshakable in one's determination;
Phase III: t
2~ t
3, because hasp hinders unshakable in one's determination stopping, electric current rises again;
Fourth stage: t
3~ t
4, electric current reaches stable state;
Five-stage: t
4~ t
5, separately, iron core moves hasp again, and electric current declines again, to t
5moment is zero.
Fault diagnosis algorithm is with breaker closing coil current parameter { i herein
1, i
2, i
3and time parameter { t
1, t
2, t
3, t
4, t
5totally 8 parameters are as eigenwert structural attitude space, and suppose t
0=0 as reference point parameter computing time, and separating brake situation lower eigenvalue is similar, and because fourth stage is not obvious, so adopt 4 temporal characteristics amounts, 3 current characteristic amounts, no longer illustrate below.
Step 2, based on the data of primary cut-out when normal operation, set up the model of core pivot element analysis.
(1) gather the data of primary cut-out when normal operation, set up training sample data matrix X according to the data collected
m × n, i-th training sample data is x
i; Pass through Nonlinear Mapping
by x
ihigh-dimensional feature space is mapped to from the input space:
standardization is carried out to it simultaneously.
(2) standardized data matrix Z is inputted in high-dimensional feature space
m × ncovariance matrix be expressed as
(3) by COV (Z) P
i=λ
ip
icalculate the eigenvalue λ of COV (Z)
iwith proper vector p
i; To eigenvalue λ
iby descending sort, obtain λ '
1> λ '
2> L > λ '
n, assignment λ
i=λ '
i; To proper vector p
icarry out orthogonalization process, obtain p '
1, p '
2, L, p '
n, assignment p
i=p '
i; By standardized data matrix Z
m × nbe decomposed into the outer sum of n proper vector
wherein t
ifor principal component vector, reflect the interrelated relation between sample.
(4) eigenvalue λ after sequence is calculated
iaccumulation contribution rate L
1, L
2, L, L
n, according to setting threshold epsilon, if L
k>=ε, then extract the number k of principal component vector;
(5) at formula COV (Z) p
i=λ
ip
iboth sides are simultaneously to each data sample
do inner product, can obtain:
(6) nuclear matrix is defined
then can obtain:
Wherein, α
ifor linear coefficient.
(7) K '=K-I is utilized
mk-KI
m+ I
mkI
mcentralization process is carried out to nuclear matrix, wherein
(8) pass through
the value of compute statistics SPE, wherein, e
ifor error matrix vector, Z
ifor standardized data matrix-vector, P
k=[p
1, p
2, L, p
k] be k proper vector before after orthogonalization process,
Its confidence limit can be expressed as
Wherein
C
αfor the critical value of normal distribution under insolation level α.
Step 3, model based on core pivot element analysis, detect abnormal data sample.
First the data in Resurvey primary cut-out operational process, set up test sample book data matrix according to the data collected; Then adopt the method identical with step (2), nuclear matrix is calculated, until calculate the value of statistic SPE to test sample book data matrix; Finally the confidence limit that the value of the statistic SPE calculated and step (26) obtain is compared, if exceed, be judged as breaking down, otherwise normally.
Step 4, utilization support vector machine carry out fault diagnosis.
Below by an embodiment, the present invention is described further.
1, Closing fault instance analysis
The present invention is using VBM5-12 type spring operating mechanism vacuum circuit breaker as experimental prototype, and exploitation isolating switch on-line monitoring and fault diagnosis system device, gather fault data by fault simulation experiment and build fault sample space.Fault data type comprises bite unshakable in one's determination, operating mechanism bite, and coil voltage is too low, and idle motion unshakable in one's determination is long waits control loop major failure type.Wherein, have between breaker closing fault type and correlation parameter and contact comparatively closely, its fundamental relation is as shown in table 1.
Table 1: the corresponding relation of Closing fault and correlation parameter
The present invention closes a floodgate data as kernel pivot model training sample under first acquiring 40 groups of normal operating conditionss, sets up core pivot element analysis model.Gather Closing fault test sample book data set and detect test sample book as Closing fault data exception, utilize core pivot element analysis method to carry out the detection of abnormal data sample.Last operation support vector machine carries out fault diagnosis.For characteristic quantity t1, t2, illustrate Closing fault SVM training sample SPE and scheme, as shown in Figure 3, Figure 4.
KPCA anomaly data detection result and corresponding fault type consistent with table 1.This shows that carrying out combined floodgate abnormal failure data monitoring by KPCA method has higher accuracy and specific aim.
2, separating brake analysis of failure examples
Have between breaker open operation fault type and correlation parameter and contact comparatively closely, its fundamental relation is as shown in table 2 below.Similar to the method that Closing fault is analyzed, separating brake fault is analyzed.With characteristic quantity i
1, i
2for example, illustrate separating brake fault SVM training sample SPE and scheme, as shown in Figure 5, Figure 6.
Table 2: the corresponding relation of Closing fault and correlation parameter
KPCA anomaly data detection result and corresponding fault type consistent with table 2.This shows that carrying out separating brake abnormal failure data monitoring by KPCA method has higher accuracy and specific aim.
Below only in one embodiment mentality of designing of the present invention is described, when system allows, the present invention can expand to external more functional module simultaneously, thus expands its function to greatest extent.
The above, be only the specific embodiment of the present invention, but protection scope of the present invention is not limited thereto, and any change of expecting without creative work or replacement, all should be encompassed within protection scope of the present invention.Therefore, the protection domain that protection scope of the present invention should limit with claims is as the criterion.
Claims (5)
1., based on a support vector machine Fault Diagnosis for HV Circuit Breakers method for core pivot element analysis, it is characterized in that: comprise the steps:
(1) the divide-shut brake coil current curve of primary cut-out is gathered as the database of fault diagnosis, data when comprising the data of primary cut-out when normal operation and primary cut-out in misoperation;
(2) based on the data of primary cut-out when normally running, the model of core pivot element analysis is set up;
(3) based on the model of core pivot element analysis, abnormal data sample is detected;
(4) support vector machine is used to carry out fault diagnosis.
2. the support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis according to claim 1, it is characterized in that: in described step (1), the divide-shut brake coil current of primary cut-out is gathered by Hall current sensor.
3. the support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis according to claim 1, is characterized in that: in described step (2), the foundation of core pivot element analysis model comprises the steps:
(21) gather the data of primary cut-out when normal operation, set up training sample data matrix X according to the data collected
m × n, i-th training sample data is x
i;
(22) choose kernel function and nuclear parameter, the nuclear matrix K of calculation training sample data matrix, centralization process is carried out to nuclear matrix K and obtains K ';
(23) calculating K ' covariance matrix, the eigenvalue λ of the covariance matrix described in calculating
iand proper vector p
i;
(24) to eigenvalue λ
iby descending sort, obtain λ '
1> λ '
2> L > λ '
n, assignment λ
i=λ '
i; To proper vector p
icarry out orthogonalization process, obtain p '
1, p '
2, L, p '
n, assignment p
i=p '
i; By standardized data matrix Z
m × nbe decomposed into the outer sum of n proper vector
wherein t
ifor principal component vector, reflect the interrelated relation between sample;
(25) eigenvalue λ after sequence is calculated
iaccumulation contribution rate L
1, L
2, L, L
n, according to setting threshold epsilon, if L
k>=ε, then extract the number k of principal component vector;
(26) compute statistics SPE value and determine confidence limit.
4. the support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis according to claim 3, it is characterized in that: in described step (3), the testing process of abnormal data sample is: the data first in Resurvey primary cut-out operational process, sets up test sample book data matrix according to the data collected; Then adopt the method identical with step (2), nuclear matrix is calculated, until calculate the value of statistic to test sample book data matrix; Finally the confidence limit that the value of the statistic SPE calculated and step (26) obtain is compared, if exceed, be judged as breaking down, otherwise normally.
5. the support vector machine Fault Diagnosis for HV Circuit Breakers method based on core pivot element analysis according to claim 3, is characterized in that: in described step (26):
The value of compute statistics SPE is
Wherein, e
ifor error matrix vector, Z
ifor standardized data matrix-vector, P
k=[p
1, p
2, L, p
k] be k proper vector before after orthogonalization process,
Determine that confidence is limited to
Wherein
C
αfor the critical value of normal distribution under insolation level α.
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CN104793134A (en) * | 2015-04-29 | 2015-07-22 | 中国电力科学研究院 | Breaker operating mechanism fault diagnosis method based on least square support vector machine |
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CN108445382A (en) * | 2018-04-23 | 2018-08-24 | 温州大学 | A kind of rapid failure detection method of high-voltage circuitbreaker |
CN108828440A (en) * | 2018-06-12 | 2018-11-16 | 江苏镇安电力设备有限公司 | High-voltage circuitbreaker defect diagnostic method based on wavelet-packet energy |
CN108898182A (en) * | 2018-07-02 | 2018-11-27 | 武汉科技大学 | A kind of MMC method for diagnosing faults based on core pivot element analysis and support vector machines |
CN110007220A (en) * | 2019-03-28 | 2019-07-12 | 南方电网科学研究院有限责任公司 | Method and device for diagnosing operating state of circuit breaker mechanism |
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CN111913103A (en) * | 2020-08-06 | 2020-11-10 | 国网福建省电力有限公司 | Fault detection method for spring energy storage operating structure circuit breaker |
CN112578315A (en) * | 2020-11-26 | 2021-03-30 | 贵州电网有限责任公司 | Control loop disconnection fault judgment method based on matrix diagram |
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CN104793134A (en) * | 2015-04-29 | 2015-07-22 | 中国电力科学研究院 | Breaker operating mechanism fault diagnosis method based on least square support vector machine |
CN106019138A (en) * | 2016-07-25 | 2016-10-12 | 深圳供电局有限公司 | Online diagnosis method for mechanical fault of high-voltage circuit breaker |
CN106019138B (en) * | 2016-07-25 | 2018-10-19 | 深圳供电局有限公司 | Online diagnosis method for mechanical fault of high-voltage circuit breaker |
CN108445382A (en) * | 2018-04-23 | 2018-08-24 | 温州大学 | A kind of rapid failure detection method of high-voltage circuitbreaker |
CN108828440A (en) * | 2018-06-12 | 2018-11-16 | 江苏镇安电力设备有限公司 | High-voltage circuitbreaker defect diagnostic method based on wavelet-packet energy |
CN108898182A (en) * | 2018-07-02 | 2018-11-27 | 武汉科技大学 | A kind of MMC method for diagnosing faults based on core pivot element analysis and support vector machines |
CN110687346A (en) * | 2018-07-04 | 2020-01-14 | 国网上海市电力公司 | Method for checking and optimizing power grid voltage abnormity reason data |
CN110007220A (en) * | 2019-03-28 | 2019-07-12 | 南方电网科学研究院有限责任公司 | Method and device for diagnosing operating state of circuit breaker mechanism |
CN111060813A (en) * | 2019-12-09 | 2020-04-24 | 国网北京市电力公司 | Fault diagnosis method and device for high-voltage circuit breaker operating mechanism and electronic equipment |
CN111913103A (en) * | 2020-08-06 | 2020-11-10 | 国网福建省电力有限公司 | Fault detection method for spring energy storage operating structure circuit breaker |
CN111913103B (en) * | 2020-08-06 | 2022-11-08 | 国网福建省电力有限公司 | Fault detection method for spring energy storage operating structure circuit breaker |
CN112578315A (en) * | 2020-11-26 | 2021-03-30 | 贵州电网有限责任公司 | Control loop disconnection fault judgment method based on matrix diagram |
CN112578315B (en) * | 2020-11-26 | 2022-08-26 | 贵州电网有限责任公司 | Control loop disconnection fault judgment method based on matrix diagram |
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Application publication date: 20141224 |